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首页> 外文期刊>Advances in Structural Engineering >A new physical parameter identification method for shear frame structures under limited inputs and outputs
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A new physical parameter identification method for shear frame structures under limited inputs and outputs

机译:有限输入和输出下剪切帧结构的新物理参数识别方法

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摘要

A new physical parameter identification method with a name of EKPF-LS is proposed for shear frame structures under limited inputs and outputs by a combination of extended Kalman particle filter (EKPF) and least square (LS) algorithm. The basic principle of EKPF-LS is to establish the proposed distribution function of the particle filter through EKF-LS. In this method, EKPF is introduced to get rid of the restriction of Gaussian white noise model and reduce the linearization error caused by EKF. Meanwhile, LS is utilized to address the problem of unmeasured excitation estimations. The effectiveness and accuracy of the proposed EKPF-LS method is verified by a numerical example of a four-story hysteretic shear frame under an earthquake excitation and an experimental test of a four-story shear type frame using Gaussian white noise and sine sweep signal as excitations, respectively. Gaussian colored noises are then added to the solved and measured response signals in the numerical example and experimental test, respectively. The results demonstrate that the proposed method can identify the stiffness of shear frame structures effectively and is superior to the existed EKF-LS approach when the structural system is nonlinear structural system or Colored noise model.
机译:通过扩展卡尔曼粒子滤波器(EKPF)和最小二乘(LS)算法的组合,提出了具有EKPF-LS名称的新物理参数识别方法,用于剪切帧结构和输出。 EKPF-LS的基本原理是通过EKF-LS建立粒子滤波器的所提出的分布函数。在这种方法中,引入了EKPF以摆脱高斯白噪声模型的限制,并降低由EKF引起的线性化误差。同时,利用LS来解决未测量的激励估计问题。所提出的EKPF-LS方法的有效性和准确性通过地震激励下的四层滞后剪切框架的数值例子和使用高斯白噪声和正弦扫描信号的四层剪切式框架的实验测试。激动人心。然后分别在数值和实验测试中将高斯彩色噪声添加到求解的和测量响应信号中。结果表明,当结构系统是非线性结构系统或彩色噪声模型时,所提出的方法可以有效地识别剪切框架结构的刚度,并且优于存在的EKF-LS方法。

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